基于纵向斑块的多发性硬化症白质病灶分割。

Snehashis Roy, Aaron Carass, Jerry L Prince, Dzung L Pham
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引用次数: 13

摘要

从纵向MR图像中分割t2高强度白质病变对于了解多发性硬化症的进展至关重要。大多数病灶分割技术在每个时间点独立发现病灶,即使在时间序列中每个点存在不同的噪声和图像对比度变化。在本文中,我们提出了一种基于斑块的四维病灶分割方法,该方法利用了纵向数据的时间分量。对于每个具有多个时间点的受试者,从所有时间点的T1-w和FLAIR扫描构建4D补丁。对于来自受试者的每一个4D patch,从参考文献中找到几个相关的匹配的4D patch,它们的凸组合重建受试者的4D patch。然后,以类似的方式组合参考的相应手工分割补丁,生成主题补丁病变的4D隶属度。我们将基于四维斑块的分割与独立的基于三维体素和基于斑块的病变分割算法进行了比较。基于来自30个数据集的地面真值分割,我们表明,与两种最先进的3D分割算法相比,使用4D方法后,手动和自动分割之间的平均Dice系数有所提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Longitudinal Patch-Based Segmentation of Multiple Sclerosis White Matter Lesions.

Segmenting T2-hyperintense white matter lesions from longitudinal MR images is essential in understanding progression of multiple sclerosis. Most lesion segmentation techniques find lesions independently at each time point, even though there are different noise and image contrast variations at each point in the time series. In this paper, we present a patch based 4D lesion segmentation method that takes advantage of the temporal component of longitudinal data. For each subject with multiple time-points, 4D patches are constructed from the T1-w and FLAIR scans of all time-points. For every 4D patch from a subject, a few relevant matching 4D patches are found from a reference, such that their convex combination reconstructs the subject's 4D patch. Then corresponding manual segmentation patches of the reference are combined in a similar manner to generate a 4D membership of lesions of the subject patch. We compare our 4D patch-based segmentation with independent 3D voxel-based and patch-based lesion segmentation algorithms. Based on ground truth segmentations from 30 data sets, we show that the mean Dice coefficients between manual and automated segmentations improve after using the 4D approach compared to two state-of-the-art 3D segmentation algorithms.

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